首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Unsupervised Segmentation of Human Motion Data Using a Sticky Hierarchical Dirichlet Process-Hidden Markov Model and Minimal Description Length-Based Chunking Method for Imitation Learning
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Unsupervised Segmentation of Human Motion Data Using a Sticky Hierarchical Dirichlet Process-Hidden Markov Model and Minimal Description Length-Based Chunking Method for Imitation Learning

机译:使用粘性分层Dirichlet过程隐马尔可夫模型和基于最小描述长度的分块方法进行仿生学习的无监督人运动数据分割

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We propose an unsupervised motion segmentation method for enabling a robot to imitate and perform various unit motions by observing unsegmented human motion. Natural unsegmented human motion data contain various types of unit motions, such as 'waving good-bye', 'walking' and 'throwing a ball'. A robot has to segment the data and extract unit motions from the data to imitate the motions. In previous work, an ergodic hidden Markov model (HMM) was used to model unsegmented human motion. However, there are two main problems with the classical use of this model. (i) Setting an appropriate number of hidden states is difficult because how complex the motions contained in the learning data are and how many there are unknown. (ii) We did not have an effective chunking method that could chunk elemental motions into meaningful unit motions without being captured by local minima. To overcome these problems, we developed an unsupervised motion segmentation method for imitation learning using a sticky hierarchical Dirichlet process (HDP)-HMM, a nonparametric Bayesian model, and an unsupervised chunking method based on a Gibbs sampler and the minimal description length (MDL) principle of imitation learning of unsegmented human motion. We developed this chunking method to work with the sticky HDP-HMM and extract unit human motions. We conducted several experiments to evaluate this method. The proposed method could extract unit motions from unsegmented human motion data. The sticky HDP-HMM can be used to model unsegmented human motion more accurately than with a conventional HMM and simultaneously estimate the number of hidden states. We also evaluated the dependency of the HDP-HMM on the hyperparameters of the model.
机译:我们提出了一种无监督运动分割方法,该方法可以使机器人通过观察未细分的人体运动来模仿并执行各种单位运动。未分段的自然人体运动数据包含各种类型的单位运动,例如“挥手再见”,“行走”和“掷球”。机器人必须分割数据并从数据中提取单位运动以模仿运动。在先前的工作中,使用遍历遍历的隐马尔可夫模型(HMM)来模拟未分段的人体运动。但是,此模型的经典用法存在两个主要问题。 (i)设置适当数量的隐藏状态很困难,因为学习数据中包含的运动有多复杂,有多少未知。 (ii)我们没有有效的分块方法,可以将元素运动分块为有意义的单位运动,而不会被局部最小值所捕获。为了克服这些问题,我们开发了一种用于粘性学习的无监督运动分割方法,该方法使用粘性分层Dirichlet过程(HDP)-HMM,非参数贝叶斯模型以及基于Gibbs采样器和最小描述长度(MDL)的无监督分块方法模仿人体不分段运动的原理。我们开发了这种分块方法,可与粘性HDP-HMM配合使用并提取单位人体运动。我们进行了一些实验来评估这种方法。所提出的方法可以从未分割的人体运动数据中提取单位运动。与传统的HMM相比,粘性HDP-HMM可以更准确地对未分段的人体运动进行建模,并同时估计隐藏状态的数量。我们还评估了HDP-HMM对模型超参数的依赖性。

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